Semantic Web for Health Care and Biomedical Informatics
Download
Report
Transcript Semantic Web for Health Care and Biomedical Informatics
Empowering Translational Research
using Semantic Web Technologies
OCCBIO, June, 2008
Amit P. Sheth
Kno.e.sis Center, Wright State University
[email protected]
Knowledge Enabled Information and Services Science
Translational Research & Semantic Web
• Translate discoveries that typically begin at “the bench”
with basic research — in which scientists study disease at
a molecular or cellular level — into progress to the clinical
level, or the patient's “bedside.”
• Increasingly biology and biomedical science is a data
driven discipline. Dealing with large amounts of distributed
and (syntactically, structurally and semantically)
heterogeneous data, and analysis of such data is a key
challenge.
• Semantic Web is a Data Web where by associating
meaning with data, it is easier to search, integrate and
analyze data.
Knowledge Enabled Information and Services Science
Translational Medicine ...
...needs a connection
Hypothesis Validation
Experiment design
Predictions
Personalized medicine
Biomedical Informatics
Semantic Web research aims at
providing this connection!
Etiology
Pathogenesis
Clinical findings
Diagnosis
Prognosis
Treatment
Pubmed
Clinical
Trials.gov
Medical Informatics
Genome
Transcriptome
Proteome
Genbank Metabolome
Physiome
...ome
Uniprot
More advanced capabilities for
search,
integration,
analysis,
linking to new insights
and discoveries!
Bioinformatics
Knowledge Enabled Information and Services Science
Evolution of the Web
Web as an oracle / assistant /
partner
- “ask to the Web”
- using semantics to leverage
2007
text + data + services + people
Web of people
- social networks, user-created content
- GeneRIF, Connotea
Web of services
- data = service = data, mashups
- ubiquitous computing
1997
Web of databases
- dynamically generated pages
- web query interfaces
Web of pages
- text, manually created links
- extensive navigation
Knowledge Enabled Information and Services Science
Outline
• Semantic Web – very brief intro
• Scenarios to demonstrate the applications
• Some of the Kno.e.sis capabilities in Semantic
Web technologies and their applications to
biomedicine and health care in collaboration with
biomedical scientists and clinicians
Knowledge Enabled Information and Services Science
Semantic Web Enablers and Techniques
• Ontology: Agreement with Common Vocabulary
& Domain Knowledge; Schema + Knowledge
base
• Semantic Annotation (metadata Extraction):
Manual, Semi-automatic (automatic with human
verification), Automatic
• Computation/reasoning: disambiguation,
semantics enabled search, integration, complex
queries, analysis (paths, subgraph), pattern
finding, mining, hypothesis validation, discovery,
visualization
Knowledge Enabled Information and Services Science
Maturing capabilites and ongoing research
• Text mining: Entity recognition, Relationship
extraction
• Integrating text, experimetal data, curated and
multimedia data
• Clinical and Scientific Workflows with semantic
web services
• Hypothesis driven retrieval of scientific literature,
Undiscovered public knowledge
Knowledge Enabled Information and Services Science
Opportunity: exploiting clinical and biomedical data
binary
text
Scientific
Literature
Health
Information
Services
PubMed
300 Documents
Published Online
each day
Elsevier
iConsult
NCBI
User-contributed
Content (Informal) Public Datasets
GeneRifs
Genome,
Protein DBs
new sequences
daily
Clinical Data
Personal
health history
Laboratory
Data
Lab tests,
RTPCR,
Mass spec
Search, browsing, complex query, integration, workflow,
analysis, hypothesis validation, decision support.
Knowledge Enabled Information and Services Science
Scenario 1:
• Status: In use today
• Where: Athens Heart Center
• What: Use of semantic Web technologies
for clinical decision support
Also research on adaptive clinical processes
Knowledge Enabled Information and Services Science
Operational since January 2006
Knowledge Enabled Information and Services Science
Active Semantic EMR
Annotate ICD9s
Annotate Doctors
Lexical Annotation
Insurance
Formulary
Level 3 Drug
Interaction
Drug Allergy
Knowledge Enabled Information and Services Science
Agile Clinical Pathways
• Volatile nature of execution environments
– May have an impact on multiple activities/ tasks in the
workflow
• HF Pathway
– New information about diseases, drugs becomes
available
– Affects treatment plans, drug-drug interactions
• Need to incorporate the new knowledge into
execution
– capture the constraints and relationships between
different tasks activities
Knowledge Enabled Information and Services Science
New knowledge about
treatment found during
the execution of the pathway
New knowledge about drugs,
drug drug interactions
Knowledge Enabled Information and Services Science
Extraction and Annotation using an ontology
Knowledge Enabled Information and Services Science
Extracting the Relationship
Diabetes mellitus adversely affects the outcomes in patients with myocardial infarction (MI), due in part to the exacerbation of left
ventricular (LV) remodeling. Although angiotensin II type 1 receptor blocker (ARB) has been demonstrated to be effective in the
treatment of heart failure, information about the potential benefits of ARB on advanced LV failure associated with diabetes is lacking.
To induce diabetes, male mice were injected intraperitoneally with streptozotocin (200 mg/kg). At 2 weeks, anterior MI was created by
ligating the left coronary artery. These animals received treatment with olmesartan (0.1 mg/kg/day; n = 50) or vehicle (n = 51) for 4
weeks. Diabetes worsened the survival and exaggerated echocardiographic LV dilatation and dysfunction in MI. Treatment of diabetic
MI mice with olmesartan significantly improved the survival rate (42% versus 27%, P < 0.05) without affecting blood glucose, arterial
blood pressure, or infarct size. It also attenuated LV dysfunction in diabetic MI. Likewise, olmesartan attenuated myocyte hypertrophy,
interstitial fibrosis, and the number of apoptotic cells in the noninfarcted LV from diabetic MI. Post-MI LV remodeling and failure in
diabetes were ameliorated by ARB, providing further evidence that angiotensin II plays a pivotal role in the exacerbated heart failure
after diabetic MI.
ARB
causes
heart failure
Angiotensin II type 1 receptor blocker attenuates exacerbated left ventricular remodeling and failure in diabetes-associated myocardial infarction.,
Matsusaka H, et. al.
Knowledge Enabled Information and Services Science
Scenario 2
• Status: Completed research
• Where: NIH/NIDA
• What: Understanding the genetic basis of
nicotine dependence.
• How: Semantic Web technologies (especially
RDF, OWL, and SPARQL) support information
integration and make it easy to create semantic
mashups (semantically integrated resources).
Knowledge Enabled Information and Services Science
Genome and pathway information integration
Reactome
KEGG
•pathway
•pathway
•protein
•protein
•pmid
•pmid
HumanCyc
•pathway
•protein
•pmid
Entrez Gene
•GO ID
•HomoloGene ID
GeneOntology
HomoloGene
Knowledge Enabled Information and Services Science
Entrez
Knowledge
Model
(EKoM)
BioPAX
ontology
Knowledge Enabled Information and Services Science
Gene-Pathway Data Integration–
Understanding the Genetic-basis of Nicotine Dependence
Collaborators: NIDA, NLM
Biological
Significance:
• Understand the
role of genes in
nicotine addiction
• Treatment of drug
addiction based
on genetic factors
• Identify important
genes and use for
pharmaceutical
productions
Knowledge Enabled Information and Services Science
Scenario 3
• Status: Completed research
• Where: NIH
• What: queries across integrated data
sources
– Enriching data with ontologies for integration,
querying, and automation
– Ontologies beyond vocabularies: the power of
relationships
Knowledge Enabled Information and Services Science
Use data to test hypothesis
Link between glycosyltransferase activity and
congenital muscular dystrophy?
Gene name
Interactions
Glycosyltransferase
GO
gene
Sequence
PubMed
OMIM
Congenital muscular dystrophy
Adapted from: Olivier Bodenreider, presentation at HCLS Workshop, WWW07
Knowledge Enabled Information and Services Science
In a Web pages world…
(GeneID: 9215)
has_associated_disease
Congenital muscular
dystrophy,
type 1D
has_molecular_function
Acetylglucosaminyltransferase activity
Knowledge
Enabled
and Services
Science at HCLS Workshop, WWW07
Adapted
from: Information
Olivier Bodenreider,
presentation
With the semantically enhanced data
SELECT DISTINCT ?t ?g ?d {
?t is_a GO:0016757 .
GO:0016757
?g has molecular functionglycosyltransferase
?t .
?g has_associated_phenotype ?b2 .
isa
?b2 has_textual_description ?d .
FILTER (?d, “muscular distrophy”, “i”) . GO:0008194
FILTER (?d, “congenital”,GO:0016758
“i”)
}
GO:0008375
acetylglucosaminyltransferase
GO:0008375
acetylglucosaminyltransferase
MIM:608840
Muscular dystrophy,
congenital, type 1D
has_molecular_function
LARGE
EG:9215
has_associated_phenotype
From medinfo paper.
Adapted from: Olivier Bodenreider, presentation at HCLS Workshop, WWW07
Knowledge Enabled Information and Services Science
Scenario 4
• Status: Research prototype and in progress
• Where: UGA
• What:
– Semantic Problem Solving Environment (PSE)
for Trypanosoma cruzi (Chagas Disease)
• Workflow with Semantic Annotation of Experimental
Data already in use
• Knowledge driven query formulation
Knowledge Enabled Information and Services Science
Knowledge driven query formulation
Complex queries can also include:
- on-the-fly Web services execution to retrieve additional data
- inference rules to make implicit knowledge explicit
Knowledge Enabled Information and Services Science
Scenario 5
• When: Research in progress
• Where: Cincinatti Children’s Hospital
Medical Center, AFRL
• What: scientific literature mining
– Dealing with unstructured information
– Extracting knowledge from text
– Complex entity recognition
– Relationship extraction
Knowledge Enabled Information and Services Science
Method – Parse Sentences in PubMed
SS-Tagger (University of Tokyo)
SS-Parser (University of Tokyo)
• Entities (MeSH terms) in sentences occur in modified forms
• “adenomatous”
modifies
“hyperplasia”
(TOP (S
(NP (NP (DT An)
(JJ excessive)
(ADJP (JJ endogenous) (CC or) (JJ
• “An excessive
endogenous
or exogenous
modifies
exogenous)
) (NN stimulation)
) (PP
(IN by) (NPstimulation”
(NN estrogen)
) ) ) (VP (VBZ
“estrogen”
induces)
(NP (NP (JJ adenomatous) (NN hyperplasia) ) (PP (IN of) (NP (DT
• Entities
can also occur) as
of 2 or more other entities
the)
(NN endometrium)
) ) composites
)))
• “adenomatous hyperplasia” and “endometrium” occur as “adenomatous
hyperplasia of the endometrium”
Knowledge Enabled Information and Services Science
• What can we do with the extracted
knowledge?
• Semantic browser demo
Knowledge Enabled Information and Services Science
Conclusion
Semantic web technologies can help with:
– Fusion of data: semi-structured, structured,
experimental, literature, multimedia
– Analysis and mining of data, extraction,
annotation, capture provenance of data
through annotation, workflows with SWS
– Querying of data at different levels of
granularity, complex queries, knowledge-driven
query interface
– Perform inference across data sets
Knowledge Enabled Information and Services Science
• Researchers: Satya Sahoo, Cartic
Ramakrishnan, Pablo Mendes and Kno.e.sis
team
• Collaborators: Athens Heart Center (Dr. Agrawal),
CCHMC (Bruce Aronow), NLM (Olivier
Bodenreider), CCRC-UGA (Will York), UGA
(Tarleton), Bioinformatics-WSU (Raymer)
• Funding: NIH/NCRR, NIH/NLBHI, NSF
http://knoesis.org
Knowledge Enabled Information and Services Science
References
1.
2.
3.
4.
5.
6.
•
A. Sheth, S. Agrawal, J. Lathem, N. Oldham, H. Wingate, P. Yadav, and K. Gallagher, Active
Semantic Electronic Medical Record, Intl Semantic Web Conference, 2006.
Satya Sahoo, Olivier Bodenreider, Kelly Zeng, and Amit Sheth, An Experiment in Integrating
Large Biomedical Knowledge Resources with RDF: Application to Associating Genotype and
Phenotype Information
WWW2007 HCLS Workshop, May 2007.
Satya S. Sahoo, Kelly Zeng, Olivier Bodenreider, and Amit Sheth, From "Glycosyltransferase to
Congenital Muscular Dystrophy: Integrating Knowledge from NCBI Entrez Gene and the Gene
Ontology, Amsterdam: IOS, August 2007, PMID: 17911917, pp. 1260-4
Satya S. Sahoo, Olivier Bodenreider, Joni L. Rutter, Karen J. Skinner , Amit P. Sheth, An
ontology-driven semantic mash-up of gene and biological pathway information: Application to the
domain of nicotine dependence, submitted, 2007.
Cartic Ramakrishnan, Krzysztof J. Kochut, and Amit Sheth, "A Framework for Schema-Driven
Relationship Discovery from Unstructured Text", Intl Semantic Web Conference, 2006, pp. 583596
Satya S. Sahoo, Christopher Thomas, Amit Sheth, William S. York, and Samir Tartir, "Knowledge
Modeling and Its Application in Life Sciences: A Tale of Two Ontologies", 15th International World
Wide Web Conference (WWW2006), Edinburgh, Scotland, May 23-26, 2006.
Demos at: http://knoesis.wright.edu/library/demos/
Knowledge Enabled Information and Services Science